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相关概念视频

Interpreting Run Charts01:25

Interpreting Run Charts

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Run charts, essentially line graphs plotted over time, serve as fundamental yet effective tools for process analysis. They chronicle data sequentially, facilitating the identification of trends, shifts, or cyclical movements. This graphical representation is instrumental in determining whether a process is stable or exhibits signs of potential instability indicative of special cause variation. In the healthcare domain, run charts depict infection rates over time, enabling hospitals to monitor...
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Run Charts01:12

Run Charts

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Run charts serve as an essential instrument for visualizing the performance of various processes over time, enabling the identification of trends and patterns crucial for quality improvement. These charts map out a series of data points chronologically, offering insights into the stability and efficiency of a process. A run chart's creation involves plotting data points on a graph, with the time intervals on the horizontal axis and the specific measurements on the vertical axis. For...
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相关实验视频

Updated: Jul 6, 2025

Eye-tracking Technology and Data-mining Techniques used for a Behavioral Analysis of Adults engaged in Learning Processes
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实践网络安全培训行为数据用于过程挖掘.

Radek Ošlejšek1, Martin Macák1, Karolína Dočkalová Burská1

  • 1Faculty of Informatics, Masaryk University, Botanická 68a, Brno 60200, Czech Republic.

Data in brief
|January 8, 2024
PubMed
概括
此摘要是机器生成的。

这项研究引入了网络安全培训中过程挖掘的新数据集,简化了训练员行为的分析. 这些处理的事件日志促进了网络范围内的学习分析.

关键词:
教育教育教育教育教育教育.基于主机的数据收集学习分析学习分析.基于拼图的游戏化游戏化.

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相关实验视频

Last Updated: Jul 6, 2025

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科学领域:

  • 网络安全教育 网络安全教育
  • 学习分析学习分析
  • 过程采矿采矿采矿

背景情况:

  • 网络安全培训练习通过事件日志生成有价值的行为数据.
  • 组织这些演习和处理原始数据进行分析是具有挑战性的.
  • 现有的方法需要数据转换,用于工艺挖掘技术.

研究的目的:

  • 介绍来自网络安全培训演习的两个新型数据集.
  • 促进过程挖掘在网络安全学习分析中的应用.
  • 为分析学员行为提供易于使用的数据.

主要方法:

  • 从两个不同的网络安全培训演习中收集事件日志.
  • 处理和将原始行为数据转换为适合过程挖掘的格式.
  • 从训练进展事件,Bash命令和Metasploit命令中生成联合的CSV文件.

主要成果:

  • 从52名和42名参与者的练习中创建了两个数据集.
  • 总共收集了 11,757 个事件,包括训练进展,Bash 和 Metasploit 命令.
  • 处理的数据已经准备好输入到现有的过程挖掘工具中.

结论:

  • 提出的数据集简化了在网络安全培训中使用过程挖掘来学习分析的使用.
  • 这些数据集使实习生在网络范围内的行为能够更有效地分析.
  • 这项研究解决了将过程挖掘应用于网络安全教育中的数据准备瓶.